Nonlinear Time Series

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A01=David Stoffer
A01=Eric Moulines
A01=Randal Douc
advanced nonlinear time series techniques
Arch Model
ARMA Coefficient
ARMA Model
ARMA Type Model
Asymmetric Power Arch
Author_David Stoffer
Author_Eric Moulines
Author_Randal Douc
Basic Stochastic Volatility Model
Beyond Linear Models
BLP.
Category=PBT
Category=PBWL
Comprehensive Nuclear Test Ban Treaty
Conditional Expectation
EEG Trace
eq_isMigrated=1
eq_nobargain
ergodic theory
GARCH Model
hidden Markov process
Higher Order Spectra
Linear Gaussian Process
Linear Gaussian State Space Models
Linear Models
Markov Models
Markovian Models
Negative Binomial
Order Volterra
Overdispersed Poisson Model
particle filtering
Sample ACF
statistical inference methods
stochastic modeling
Stochastic Recurrence Equations
Stochastic Volatility Model
Strong White Noise
Tar Model
time series analysis exercises
Volterra Series

Product details

  • ISBN 9781466502253
  • Weight: 1180g
  • Dimensions: 156 x 234mm
  • Publication Date: 06 Jan 2014
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Designed for researchers and students, Nonlinear Times Series: Theory, Methods and Applications with R Examples familiarizes readers with the principles behind nonlinear time series models—without overwhelming them with difficult mathematical developments. By focusing on basic principles and theory, the authors give readers the background required to craft their own stochastic models, numerical methods, and software. They will also be able to assess the advantages and disadvantages of different approaches, and thus be able to choose the right methods for their purposes.

The first part can be seen as a crash course on "classical" time series, with a special emphasis on linear state space models and detailed coverage of random coefficient autoregressions, both ARCH and GARCH models. The second part introduces Markov chains, discussing stability, the existence of a stationary distribution, ergodicity, limit theorems, and statistical inference. The book concludes with a self-contained account on nonlinear state space and sequential Monte Carlo methods. An elementary introduction to nonlinear state space modeling and sequential Monte Carlo, this section touches on current topics, from the theory of statistical inference to advanced computational methods.

The book can be used as a support to an advanced course on these methods, or an introduction to this field before studying more specialized texts. Several chapters highlight recent developments such as explicit rate of convergence of Markov chains and sequential Monte Carlo techniques. And while the chapters are organized in a logical progression, the three parts can be studied independently.

Statistics is not a spectator sport, so the book contains more than 200 exercises to challenge readers. These problems strengthen intellectual muscles strained by the introduction of new theory and go on to extend the theory in significant ways. The book helps readers hone their skills in nonlinear time series analysis and their applications.

Randal Douc, Eric Moulines, David Stoffer

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